Role of an Automated Deep Learning Algorithm for Reliable Screening of Abnormality in Chest Radiographs: A Prospective Multicenter Quality Improvement Study.

IF 3.3
Arunkumar Govindarajan, Aarthi Govindarajan, Swetha Tanamala, Subhankar Chattoraj, Bhargava Reddy, Rohitashva Agrawal, Divya Iyer, Anumeha Srivastava, Pradeep Kumar, Preetham Putha
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引用次数: 4

Abstract

In medical practice, chest X-rays are the most ubiquitous diagnostic imaging tests. However, the current workload in extensive health care facilities and lack of well-trained radiologists is a significant challenge in the patient care pathway. Therefore, an accurate, reliable, and fast computer-aided diagnosis (CAD) system capable of detecting abnormalities in chest X-rays is crucial in improving the radiological workflow. In this prospective multicenter quality-improvement study, we have evaluated whether artificial intelligence (AI) can be used as a chest X-ray screening tool in real clinical settings. Methods: A team of radiologists used the AI-based chest X-ray screening tool (qXR) as a part of their daily reporting routine to report consecutive chest X-rays for this prospective multicentre study. This study took place in a large radiology network in India between June 2021 and March 2022. Results: A total of 65,604 chest X-rays were processed during the study period. The overall performance of AI achieved in detecting normal and abnormal chest X-rays was good. The high negatively predicted value (NPV) of 98.9% was achieved. The AI performance in terms of area under the curve (AUC), NPV for the corresponding subabnormalities obtained were blunted CP angle (0.97, 99.5%), hilar dysmorphism (0.86, 99.9%), cardiomegaly (0.96, 99.7%), reticulonodular pattern (0.91, 99.9%), rib fracture (0.98, 99.9%), scoliosis (0.98, 99.9%), atelectasis (0.96, 99.9%), calcification (0.96, 99.7%), consolidation (0.95, 99.6%), emphysema (0.96, 99.9%), fibrosis (0.95, 99.7%), nodule (0.91, 99.8%), opacity (0.92, 99.2%), pleural effusion (0.97, 99.7%), and pneumothorax (0.99, 99.9%). Additionally, the turnaround time (TAT) decreased by about 40.63% from pre-qXR period to post-qXR period. Conclusions: The AI-based chest X-ray solution (qXR) screened chest X-rays and assisted in ruling out normal patients with high confidence, thus allowing the radiologists to focus more on assessing pathology on abnormal chest X-rays and treatment pathways.

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自动深度学习算法在胸片异常可靠筛查中的作用:一项前瞻性多中心质量改善研究。
在医学实践中,胸部x光是最普遍的诊断成像检查。然而,目前的工作量在广泛的卫生保健设施和缺乏训练有素的放射科医生是一个重大的挑战,在病人护理途径。因此,一个准确,可靠,快速的计算机辅助诊断(CAD)系统能够检测胸部x线异常是改善放射工作流程的关键。在这项前瞻性多中心质量改善研究中,我们评估了人工智能(AI)是否可以在实际临床环境中用作胸部x线筛查工具。方法:一组放射科医生使用基于人工智能的胸部x射线筛查工具(qXR)作为他们日常报告常规的一部分,报告了这项前瞻性多中心研究的连续胸部x射线。这项研究于2021年6月至2022年3月在印度的一个大型放射学网络中进行。结果:研究期间共处理了65,604张胸部x光片。人工智能在检测正常和异常胸部x光片方面的总体表现良好。负预测值(NPV)高达98.9%。根据曲线下面积(AUC)和相应亚异常的NPV, AI表现为CP角钝化(0.97,99.5%)、肺门畸形(0.86,99.9%)、心脏肿大(0.96,99.7%)、网状结节型(0.91,99.9%)、肋骨骨折(0.98,99.9%)、脊柱侧凸(0.98,99.9%)、肺不张(0.96,99.9%)、钙化(0.96,99.7%)、实变(0.95,99.6%)、肺气肿(0.96,99.9%)、纤维化(0.95,99.7%)、结节(0.91,99.8%)、不透明(0.92,99.2%)、胸腔积液(0.97,99.7%)和气胸(0.99,99.9%)。此外,周转时间(TAT)从qxr前到qxr后减少了约40.63%。结论:基于人工智能的胸部x线解决方案(qXR)筛查胸部x线,并以高置信度帮助排除正常患者,从而使放射科医师更多地关注异常胸部x线的病理评估和治疗途径。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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